基于模糊估计的OCR精度预测方法

V. C. Kieu, F. Cloppet, N. Vincent
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引用次数: 9

摘要

鉴于模糊是影响OCR精度的重要因素之一,本文提出了一种基于局部模糊估计的OCR精度预测方法。首先,我们利用高斯模糊和运动模糊对合成模糊图像进行模糊估计,研究模糊效果与字符大小对OCR精度的关系。这种关系被认为是定义分类器的模糊字符大小特征。最后,分类器可以将给定文档的字符分为三类:可读类、中间类和不可读类。因此,从这三个类别中推断出文档的质量分数。在一个已发表的数据库和一个工业数据库上对所提出的方法进行了评估。还给出了与OCR精度的相关性,以便与最先进的方法进行比较。
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OCR Accuracy Prediction Method Based on Blur Estimation
In this paper, we propose an OCR accuracy prediction method based on a local blur estimation since blur is one of the important factors that mostly damage OCR accuracy. First, we apply the blur estimation on synthetic blurred images by using Gaussian and motion blur in order to investigate the relation between blur effect and character size regarding OCR accuracy. This relation is considered as a blur-character size feature to define a classifier. Finally, the classifier can separate characters of a given document into three classes: readable, intermediate, and non-readable classes. Therefore, the quality score of the document is inferred from the three classes. The proposed method is evaluated on a published database and on an industrial one. The correlation with OCR accuracy is also given to compare with the state-of-the-art methods.
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